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首页> 外文期刊>IEE Proceedings. Part K >Linear prediction analysis of speech signals in the presence of white Gaussian noise with unknown variance
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Linear prediction analysis of speech signals in the presence of white Gaussian noise with unknown variance

机译:存在高斯白噪声且方差未知的语音信号的线性预测分析

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摘要

A simple method is presented to compensate for noise effects before performing linear prediction analysis of speech signals in the presence of white noise with unknown variance. The method determines a suitable bias that should be subtracted from the zero-lag autocorrelation function, rather than deriving the exact noise variance. The resulting linear prediction filter is guaranteed to be stable, since the bias used is always smaller than the minimum eigenvalue of the autocorrelation matrix. In addition to a comparison with other methods, the proposed method is examined from various viewpoints, including the degree of form ant intensity, signal-to-noise ratio (SNR), deviation of compensated spectra and objective distortion measures. The improvements observed across a data set, consisting of four sentences uttered by six speakers, indicate that the compensated spectra measured with low SNRs are comparable to the uncompensated counterparts measured with approximately 5dB higher SNRs.
机译:在存在方差未知的白噪声的情况下,对语音信号进行线性预测分析之前,提出了一种简单的方法来补偿噪声影响。该方法确定应从零滞后自相关函数中减去的合适偏差,而不是得出确切的噪声方差。由于所使用的偏差始终小于自相关矩阵的最小特征值,因此可以保证所得的线性预测滤波器稳定。除了与其他方法进行比较之外,还从各种角度对提出的方法进行了研究,包括形成剂强度,信噪比(SNR),补偿光谱偏差和客观失真测量。在整个数据集中观察到的改进,由六个说话者说出的四个句子组成,这表明以低SNR测得的补偿频谱与以SNR约高5dB测得的未补偿频谱相当。

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